The microvascular invasion (MVI) is a major prognostic factor in hepatocellular carcinoma, which is one of the malignant tumors with the highest mortality rate. The diagnosis of MVI needs discovering the vessels that contain hepatocellular carcinoma cells and counting their number in each vessel, which depends heavily on experiences of the doctor, is largely subjective and time-consuming. However, there is no algorithm as yet tailored for the MVI detection from pathological images. This paper collects the first pathological liver image dataset containing 522 whole slide images with labels of vessels, MVI, and hepatocellular carcinoma grades. The first and essential step for the automatic diagnosis of MVI is the accurate segmentation of vessels. The unique characteristics of pathological liver images, such as super-large size, multi-scale vessel, and blurred vessel edges, make the accurate vessel segmentation challenging. Based on the collected dataset, we propose an Edge-competing Vessel Segmentation Network (EVS-Net), which contains a segmentation network and two edge segmentation discriminators. The segmentation network, combined with an edge-aware self-supervision mechanism, is devised to conduct vessel segmentation with limited labeled patches. Meanwhile, two discriminators are introduced to distinguish whether the segmented vessel and background contain residual features in an adversarial manner. In the training stage, two discriminators are devised tocompete for the predicted position of edges. Exhaustive experiments demonstrate that, with only limited labeled patches, EVS-Net achieves a close performance of fully supervised methods, which provides a convenient tool for the pathological liver vessel segmentation. Code is publicly available at https://github.com/zju-vipa/EVS-Net.
翻译:微血管入侵(MVI)是肝细胞癌中的一个主要预测因素,肝脏细胞癌是恶性肿瘤,死亡率最高的恶性肿瘤之一。诊断MVI需要发现含有肝细胞癌细胞细胞细胞的容器,并计算每艘船中它们的数量,这在很大程度上取决于医生的经验,在很大程度上是主观的和耗时的。然而,目前还没有根据病理图像为MVI检测量量量量量设计的算法。本文收集了第一个病理性肝脏图象数据集,其中包括522个整张幻灯片,上面贴有船只标签、MVI和肝细胞癌肿瘤的等级。自动诊断MVI的第一和必要步骤是准确的分解容器。病理肝脏图像的独特特性,例如超大体型、多尺寸的容器和模糊的容器边缘,使得准确的容器分解具有挑战性。根据收集到的数据集,我们建议用EVES-Net(EVS-Net)来对肝脏内部分解的肝脏图象图象进行对比,其中含有分解网络和两边端分层的分解分析器。 分解网络可以向船舶提供一种完全的自我分解的分解的分解工具。